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What’s the Difference? The Potential for Convolutional Neural Networks for Transient Detection without Template Subtraction

Journal Article · · The Astronomical Journal
Abstract

We present a study of the potential for convolutional neural networks (CNNs) to enable separation of astrophysical transients from image artifacts, a task known as “real–bogus” classification, without requiring a template-subtracted (or difference) image, which requires a computationally expensive process to generate, involving image matching on small spatial scales in large volumes of data. Using data from the Dark Energy Survey, we explore the use of CNNs to (1) automate the real–bogus classification and (2) reduce the computational costs of transient discovery. We compare the efficiency of two CNNs with similar architectures, one that uses “image triplets” (templates, search, and difference image) and one that takes as input the template and search only. We measure the decrease in efficiency associated with the loss of information in input, finding that the testing accuracy is reduced from ∼96% to ∼91.1%. We further investigate how the latter model learns the required information from the template and search by exploring the saliency maps. Our work (1) confirms that CNNs are excellent models for real–bogus classification that rely exclusively on the imaging data and require no feature engineering task and (2) demonstrates that high-accuracy (>90%) models can be built without the need to construct difference images, but some accuracy is lost. Because, once trained, neural networks can generate predictions at minimal computational costs, we argue that future implementations of this methodology could dramatically reduce the computational costs in the detection of transients in synoptic surveys like Rubin Observatory's Legacy Survey of Space and Time by bypassing the difference image analysis entirely.

Research Organization:
Lawrence Berkeley National Laboratory (LBNL), Berkeley, CA (United States). National Energy Research Scientific Computing Center (NERSC)
Sponsoring Organization:
National Science Foundation (NSF); USDOE; USDOE Office of Science (SC), Basic Energy Sciences (BES). Scientific User Facilities (SUF)
Contributing Organization:
The LSST Dark Energy Science Collaboration
Grant/Contract Number:
AC02-05CH11231; AC02-76SF00515
OSTI ID:
1995913
Alternate ID(s):
OSTI ID: 2423150
Journal Information:
The Astronomical Journal, Journal Name: The Astronomical Journal Journal Issue: 3 Vol. 166; ISSN 0004-6256
Publisher:
American Astronomical SocietyCopyright Statement
Country of Publication:
United States
Language:
English

References (37)

Machine learning on difference image analysis: A comparison of methods for transient detection journal July 2019
Deep learning journal May 2015
Array programming with NumPy journal September 2020
Astropy: A community Python package for astronomy journal September 2013
Expanding the Realm of Microlensing Surveys with Difference Image Photometry journal December 1996
M31 - A unique laboratory for gravitational microlensing journal November 1992
A Method for Optimal Image Subtraction journal August 1998
The 2.5 m Telescope of the Sloan Digital Sky Survey journal April 2006
Automating Discovery and Classification of Transients and Variable Stars in the Synoptic Survey Era
  • Bloom, J. S.; Richards, J. W.; Nugent, P. E.
  • Publications of the Astronomical Society of the Pacific, Vol. 124, Issue 921 https://doi.org/10.1086/668468
journal November 2012
Automated Transient Identification in the dark Energy Survey journal August 2015
The Difference Imaging Pipeline for the Transient Search in the dark Energy Survey journal November 2015
First Results from the Catalina Real-Time Transient Survey journal April 2009
The Zwicky Transient Facility: System Overview, Performance, and First Results journal December 2018
Deep Learning for Image Sequence Classification of Astronomical Events journal September 2019
Machine Learning for the Zwicky Transient Facility journal January 2019
A deep learning approach for detecting candidates of supernova remnants journal March 2019
Machine learning for transient recognition in difference imaging with minimum sampling effort journal October 2020
Detecting optical transients using artificial neural networks and reference images from different surveys journal July 2021
Rotation-invariant convolutional neural networks for galaxy morphology prediction journal April 2015
Star–galaxy classification using deep convolutional neural networks journal October 2016
Convolutional neural networks for transient candidate vetting in large-scale surveys journal August 2017
Effective image differencing with convolutional neural networks for real-time transient hunting journal April 2018
Real-bogus classification for the Zwicky Transient Facility using deep learning journal August 2019
Matplotlib: A 2D Graphics Environment journal January 2007
Comparison of LSST and DECam wavefront recovery algorithms conference July 2016
A method of comparing the areas under receiver operating characteristic curves derived from the same cases. journal September 1983
NN-SVG: Publication-Ready Neural Network Architecture Schematics journal January 2019
seaborn: statistical data visualization journal April 2021
The high Cadence Transient Survey (Hits). i. Survey Design and Supernova Shock Breakout Constraints journal November 2016
The Astropy Project: Building an Open-science Project and Status of the v2.0 Core Package journal August 2018
Alert Classification for the ALeRCE Broker System: The Real-time Stamp Classifier journal November 2021
Deep-HiTS: Rotation Invariant Convolutional Neural Network for Transient Detection journal February 2017
How to COAAD Images. II. A Coaddition Image that is Optimal for Any Purpose in the Background-dominated Noise Limit journal February 2017
LSST: From Science Drivers to Reference Design and Anticipated Data Products journal March 2019
The Dark Energy Survey: Data Release 1 journal November 2018
Impact of Rubin Observatory LSST Template Acquisition Strategies on Early Science from the Transients and Variable Stars Science Collaboration: Non-time-critical Science Cases journal March 2020
pandas-dev/pandas: Pandas software January 2024

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